Search jobs now Find the right job type for you Explore how we help job seekers Contract talent Permanent talent Learn how we work with you Executive search Finance and Accounting Technology Marketing and Creative Legal Administrative and Customer Support Technology Risk, Audit and Compliance Finance and Accounting Digital, Marketing and Customer Experience Legal Operations Human Resources 2026 Salary Guide Demand for Skilled Talent Report Press Room Tech insights and talent strategies Labour market overview AI in recruiting Staffing for small businesses Browse jobs Find your next hire Our locations

1 result for Qa Automation Engineer in Toronto, ON

Senior AI Solutions Architect
  • Mississauga, ON
  • remote
  • Permanent
  • 170000 - 200000 CAD / Yearly
  • <p>We are looking for a Senior AI Solutions Architect to lead the delivery of advanced AI and machine learning solutions. This role combines deep technical execution with architectural leadership, helping move promising concepts into stable, production-ready applications that support critical business operations. You will collaborate with senior AI and engineering leaders to design scalable systems, guide implementation decisions, and ensure solutions create measurable operational and commercial value.</p><p><br></p><p>This role is 100% Remote.</p><p><br></p><p>Responsibilities:</p><p>• Design and lead the end-to-end architecture of AI and ML solutions, taking initiatives from early experimentation through reliable production deployment.</p><p>• Partner with AI leadership and cross-functional engineering teams to align technical roadmaps with business priorities and operational goals.</p><p>• Build, evaluate, and optimize machine learning models and AI-powered applications for high-availability environments serving large user populations.</p><p>• Establish robust MLOps and DevOps practices, including model tracking, containerization, orchestration, automated testing, and deployment pipelines.</p><p>• Select and integrate appropriate cloud, data, and infrastructure services across platforms such as Azure, AWS, and Google Cloud to support scalable AI workloads.</p><p>• Guide the development of data pipelines and platform components using technologies such as Kafka, Spark, SQL, and NoSQL systems to enable dependable model performance.</p><p>• Apply methods such as large language models, fine-tuning, privacy-aware AI techniques, and optimization approaches to solve complex operational challenges.</p><p>• Provide technical leadership through influence and credibility, helping stakeholders understand solution design, adoption considerations, and implementation impacts.</p>
  • 2026-05-19T00:00:00Z